I'm using Django 1.9 with its built-in JSONField and Postgres 9.4. In my model's attrs json field I store objects with some values, including numbers. And I need to aggregate over them to find min/max values. Something like this:


Also, it would be useful to extract specific keys:

Model.objects.values_list('attrs__my_key', flat=True)

The above queries fail with

FieldError: "Cannot resolve keyword 'my_key' into field. Join on 'attrs' not permitted."

Is it possible somehow?


  1. I know how to make a plain Postgres query to do the job, but am searching specifically for an ORM solution to have the ability to filter etc.
  2. I suppose this can be done with a (relatively) new query expressions/lookups API, but I haven't studied it yet.
  • The answer below is good. Another useful site discussing this can be found here. – eykanal Oct 27 '16 at 14:04

From django 1.11 (which isn't out yet, so this might change) you can use django.contrib.postgres.fields.jsonb.KeyTextTransform instead of RawSQL .

In django 1.10 you have to copy/paste KeyTransform to you own KeyTextTransform and replace the -> operator with ->> and #> with #>> so it returns text instead of json objects.

    val=KeyTextTransform('json_field_key', 'blah__json_field'))

You can even include KeyTextTransforms in SearchVectors for full text search

        KeyTextTransform('jsonb_text_field_key', 'json_field'))
).filter(search='stuff I am searching for')

Remember you can also index in jsonb fields, so you should consider that based upon your specific workload.

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  • 6
    Thanks for this. It took me a while to decode how to use this. In my case, the json data is stored in a model field 'jdata' (equivalent to 'attrs' in the question) and the json key is 'createdDate' which is top level. min_result = Model.objects.annotate(val=KeyTextTransform('createdDate','jdata')).aggregate(min=Min('val')) – Tim Richardson Sep 12 '17 at 1:49

For those who interested, I've found the solution (or workaround at least).

from django.db.models.expressions import RawSQL

    val=RawSQL("((attrs->>%s)::numeric)", (json_field_key,))

Note that attrs->>%s expression will become smth like attrs->>'width' after processing (I mean single quotes). So if you hardcode this name you should remember to insert them or you will get error.

/// A little bit offtopic ///

And one more tricky issue not related to django itself but that is needed to be handled somehow. As attrs is json field and there're no restrictions on its keys and values you can (depending on you application logic) get some non-numeric values in, for example, width key. In this case you will get DataError from postgres as a result of executing the above query. NULL values will be ignored meanwhile so it's ok. If you can just catch the error then no problem, you're lucky. In my case I needed to ignore wrong values and the only way here is to write custom postgres function that will supress casting errors.

create or replace function safe_cast_to_numeric(text) returns numeric as $$
    return cast($1 as numeric);
    when invalid_text_representation then
        return null;
$$ language plpgsql immutable;

And then use it to cast text to numbers:

    val=RawSQL("safe_cast_to_numeric(attrs->>%s)", (json_field_key,))

Thus we get quite solid solution for such a dynamic thing as json.

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  • The django docs don't really explain how the sql you are writing works. IN the docs, they explicitly name the table you are selecting from. Is there any other documentation which details what you can and cant omit? – J__ Nov 14 '16 at 19:45
  • I discovered that if the field names are camel case then escaped double quotes have to be included. I also discovered that ::numeric failed but cast( ... as numeric ) worked. Example ... _annotations = { '_cashTotal':RawSQL("cast(\"payinJson\"->>%s as numeric)",("cashTotal",)), '_driverFuel':RawSQL("cast(\"payinJson\"->>%s as numeric)",("driverFuel",)), '_fuelAmount':RawSQL("cast(\"payinJson\"->>%s as numeric)",("fuelAmount",)) } – Keith John Hutchison Nov 21 '17 at 4:37

I know this is a bit late (several months) but I came across the post while trying to do this. Managed to do it by:

1) using KeyTextTransform to convert the jsonb value to text

2) using Cast to convert it to integer, so that the SUM works:

q = myModel.objects.filter(type=9) \
.annotate(numeric_val=Cast(KeyTextTransform(sum_field, 'data'), IntegerField()))  \


where 'data' is the jsonb property, and 'numeric_val' is the name of the variable I create by annotating.

Hope this helps somebody!

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  • Correction to my post! Looks like you need to do an extra first step of adding an annotation to cast. ` q = myModel.objects.filter(type=8) \ .annotate(data_number=KeyTextTransform(sum_field, 'data')) \ .annotate(numeric_val=Cast('data_number', IntegerField())) \ .aggregate(Sum('numeric_val')) ` – Duncan Nov 22 '17 at 11:49
  • You can edit your own answer if you want to make a correction. – Flimm Dec 3 '18 at 14:02

It is possible to do this using a Postgres function


from django.db.models import Func, F, FloatField
from django.db.models.expressions import Value
from django.db.models.functions import Cast

text = Func(F(json_field), Value(json_key), function='jsonb_extract_path_text')
floatfield = Cast(text, FloatField())


This is much better than using the RawQuery because it doesn't break if you do a more complex query, where Django uses aliases and where there are field name collisions. There is so much going on with the ORM that can bite you with hand written implementations.

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Seems there is no native way to do it.

I worked around like this:

my_queryset = Product.objects.all() # Or .filter()...
max_val = max(o.my_json_field.get(my_attrib, '') for o in my_queryset)

This is far from being marvelous, since it is done at the Python Level (and not at the SQL level).

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